Research Methods
Statistical methods for linguistic research: Foundational Ideas - Part II
External / Open Access
Abstract
We provide an introductory review of Bayesian data analytical methods, with a focus on applications for linguistics, psychology, psycholinguistics, and cognitive science. The empirically oriented researcher will benefit from making Bayesian methods part of their statistical toolkit due to the many advantages of this framework, among them easier interpretation of results relative to research hypotheses, and flexible model specification. We present an informal introduction to the foundational ideas behind Bayesian data analysis, using, as an example, a linear mixed models analysis of data from a typical psycholinguistics experiment. We discuss hypothesis testing using the Bayes factor, and model selection using cross-validation. We close with some examples illustrating the flexibility of model specification in the Bayesian framework. Suggestions for further reading are also provided.
Full Title
Statistical methods for linguistic research: Foundational Ideas - Part II
Primary Author
Bruno Nicenboim
Co-Authors
Shravan Vasishth
Publication Type
Preprint
Year
2016
Journal
arXiv Preprint
Category
Research Methods
Institution
External / Open Access
Access
Open Access
Added to Library
March 24, 2026
Cite This Publication
APA
Bruno Nicenboim, Shravan Vasishth (2016). *Statistical methods for linguistic research: Foundational Ideas - Part II*. External / Open Access.
MLA
Bruno Nicenboim. *Statistical methods for linguistic research: Foundational Ideas - Part II*. External / Open Access, 2016.
DOI
https://doi.org/10.1111/lnc3.12207